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AI is powering the fourth industrial revolution


The following is a guest post by Yannik Schrade, CEO and Co-founder of Arcium.

Warnings about artificial intelligence have been fed to the public by worried experts for years, a constant alarm of looming danger. The past decade has seen near-exponential growth for anything AI-related, with a 37% compound annual growth rate predicted through 2030, and the volume of data mined (and regularly exploited) to fuel this rapid development has raised serious concerns about the erosion of privacy, intellectual property, and data protection.

We’re entering the Fourth Industrial Revolution, a new era fueled by breakthroughs in quantum computing, robotics, biotechnology, and artificial intelligence. But as AI rapidly advances, so does the need for systems that ensure transparency, security, and trust. Blockchain offers decentralized, verifiable systems that enhance the integrity of AI models, which often appear to be black boxes operating without visibility into how they arrive at their outcomes.

The current state of AI

The conversation around AI was turned on its head with the launch of DeepSeek. Its ties to China immediately raised red flags, with it quickly becoming clear that the model’s built-in censorship blocked users from asking questions about sensitive Chinese political issues. However, DeepSeek is open source, which means users can run it locally on their own devices. Although running DeepSeek locally gives users full control over their data, few possess the technical or computational resources to manage this process effectively.  Such complexity deters most people from attempting local deployments, despite the inherent privacy benefits.

DeepSeek’s privacy policy is murky. That aside, its open-source nature has brought AI’s privacy conundrum to the fore. With more than 1.7 billion breach notices issued in the US alone last year, integrating AI and blockchain is the logical next step, but are the nodes enough to protect our data?

Rise of the AI Agent

Blockchain’s potential to reshape AI is unfolding before our eyes. Significant developments are driving this contortion, including innovations in decentralized data storage, LLM advancements, and web3 market maturity and evolution. These breakthroughs are giving rise to new applications and benefits of AI in tandem with blockchain, but recent focus is aimed squarely at AI agents.

Agents like ElizaOS, which operates as a decentralized AI venture capital DAO, show the potential of what AI agents will mean for Web3. The possibilities feel endless: trading agents that optimize trading strategies and yield farming, AI-driven NPCs and dynamic gaming economies, and agents that can facilitate decentralized marketplaces all demonstrate the potential wave of change and innovation coming for the industry.

Private AI will secure the future of intelligence

Blockchains are public ledgers by their nature, which gives rise to many complications around privacy. Sensitive data exposure is the obvious issue, but further problems arise when considering specific use cases. Take using an AI agent to automate trading strategies: as things stand, there is massive scope for reverse engineering and potential manipulation. In many cases, AI agents require access to sensitive information, such as private keys, to execute trades on behalf of users.

This raises massive security and privacy concern, which is why Private AI is nonnegotiable. Private AI eradicates these issues. In a nutshell, it allows AI models to run on encrypted data. Combining privacy-preserving computation with AI allows us to tap into a new stream of use cases that need security, privacy, and trust.

Private AI unlocks immense potential for users and institutions alike, both on and off-chain. DeFAI is a term that will keep popping up, referring to the convergence of DeFi and AI. Privacy-powered AI agents would enable automated trading on someone’s behalf without fear of the complications noted above. Similarly, institutional trading can securely be implemented on-chain, where private AI can power on-chain dark pools, ensuring  trade strategies and order flows remain secure while leveraging the transparency of blockchain for trust.

Off-chain, look to healthcare and personalized AI. Data protection is a major contributor to the slowdown of healthcare innovationand for good reason. Private AI maintains confidentiality while facilitating innovation. AI models can process sensitive patient data in an encrypted state, enabling fully secure and decentralized healthcare applications and dramatically expanding the ability to diagnose or track important health trends. In the same way, personalized AI models can be trained without exposing sensitive data, enhancing people’s lives without the risk of data exploitation and manipulation.

There’s so much more to understand what private AI is fully capable of, and as its usage grows so too will its use cases. Privacy and innovation go hand in hand.

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